The paper presents a study on using language models to automate the construction of executable Knowledge Graph (KG) for compliance. The paper focuses on Abu Dhabi Global Market regulations and taxonomy, involves manual tagging a portion of the regulations, training BERT-based models, which are then applied to the rest of the corpus. Coreference resolution and syntax analysis were used to parse the relationships between the tagged entities and to form KG stored in a Neo4j database. The paper states that the use of machine learning models released by regulators to automate the interpretation of rules is a vital step towards compliance automation, demonstrates the concept querying with Cypher, and states that the produced sub-graphs combined with Graph Neural Networks (GNN) will achieve expandability in judgment automation systems. The graph is open sourced on GitHub to provide structured data for future advancements in the field.
翻译:论文介绍了关于使用语言模型将可执行知识图(KG)的构建自动化以促进合规的研究,论文侧重于阿布扎比全球市场条例和分类学,涉及对条例的一部分进行人工标记,培训基于BERT的模型,然后将其应用于本体的其余部分,使用共同参考分辨率和语法分析来分析被标记的实体之间的关系,并形成储存在Neo4j数据库的KG。论文指出,使用监管者释放的机器学习模型对规则解释自动化进行自动化是走向合规自动化的关键一步,向Cypher展示了概念查询,并指出与图形神经网络(GNNN)相结合的子图集将扩大判断自动化系统的范围,该图以GitHub为开源,为今后实地进展提供结构化数据。